A dose-response model for statistical analysis of chemical genetic interactions in CRISPRi screens.

TitleA dose-response model for statistical analysis of chemical genetic interactions in CRISPRi screens.
Publication TypeJournal Article
Year of Publication2024
AuthorsChoudhery S, DeJesus MA, Srinivasan A, Rock J, Schnappinger D, Ioerger TR
JournalPLoS Comput Biol
Volume20
Issue5
Paginatione1011408
Date Published2024 May
ISSN1553-7358
KeywordsAnti-Bacterial Agents, Clustered Regularly Interspaced Short Palindromic Repeats, Computational Biology, CRISPR-Cas Systems, Dose-Response Relationship, Drug, Escherichia coli, Models, Genetic, Models, Statistical, Mycobacterium tuberculosis, RNA, Guide, CRISPR-Cas Systems
Abstract

An important application of CRISPR interference (CRISPRi) technology is for identifying chemical-genetic interactions (CGIs). Discovery of genes that interact with exposure to antibiotics can yield insights to drug targets and mechanisms of action or resistance. The objective is to identify CRISPRi mutants whose relative abundance is suppressed (or enriched) in the presence of a drug when the target protein is depleted, reflecting synergistic behavior. Different sgRNAs for a given target can induce a wide range of protein depletion and differential effects on growth rate. The effect of sgRNA strength can be partially predicted based on sequence features. However, the actual growth phenotype depends on the sensitivity of cells to depletion of the target protein. For essential genes, sgRNA efficiency can be empirically measured by quantifying effects on growth rate. We observe that the most efficient sgRNAs are not always optimal for detecting synergies with drugs. sgRNA efficiency interacts in a non-linear way with drug sensitivity, producing an effect where the concentration-dependence is maximized for sgRNAs of intermediate strength (and less so for sgRNAs that induce too much or too little target depletion). To capture this interaction, we propose a novel statistical method called CRISPRi-DR (for Dose-Response model) that incorporates both sgRNA efficiencies and drug concentrations in a modified dose-response equation. We use CRISPRi-DR to re-analyze data from a recent CGI experiment in Mycobacterium tuberculosis to identify genes that interact with antibiotics. This approach can be generalized to non-CGI datasets, which we show via an CRISPRi dataset for E. coli growth on different carbon sources. The performance is competitive with the best of several related analytical methods. However, for noisier datasets, some of these methods generate far more significant interactions, likely including many false positives, whereas CRISPRi-DR maintains higher precision, which we observed in both empirical and simulated data.

DOI10.1371/journal.pcbi.1011408
Alternate JournalPLoS Comput Biol
PubMed ID38768228
PubMed Central IDPMC11104602
Grant ListP01 AI143575 / AI / NIAID NIH HHS / United States

Weill Cornell Medicine Microbiology and Immunology 1300 York Avenue, Box 62 New York, NY 10065 Phone: (212) 746-6505 Fax: (212) 746-8587